Authors:
Tijmen van Etten
1
;
2
;
Victoria Degeler
2
and
Ding Luo
1
Affiliations:
1
Shell Information Technology International B.V., Amsterdam, The Netherlands
;
2
University of Amsterdam, Science Park, Amsterdam, The Netherlands
Keyword(s):
Time Series, Deep Learning, Multiple Time Series, E-Mobility, Electric Vehicles, Intelligent Transportation, Forecasting, Energy Demand.
Abstract:
Electric Vehicle (EV) charging demand forecasting holds paramount significance in advancing sustainable transportation systems, particularly as electric vehicle adoption surges globally. Accurate predictions of charging demand are instrumental for optimizing charging infrastructure, energy management, and grid stability. By forecasting the demand for charging, stakeholders can effectively distribute resources, plan ahead for peak usage times, and lay out blueprints for the growth of infrastructure. Furthermore, precise forecasting enables the seamless integration of renewable energy sources into transportation, promoting a cleaner and greener future. In this work, challenges in EV charging demand forecasting are addressed, and an innovative framework tailored for large-scale prediction is proposed. The methodology involves generating individual forecasts for multiple charging stations, enabling a comprehensive evaluation of forecasting models across diverse contexts. The potential of
global deep learning models to enhance prediction accuracy by capturing shared patterns across time series is explored. These models exhibit remarkable generalization capabilities, proving effective even in forecasting demand at previously unobserved charging stations. The contributions of this research encompass both methodologies and insights, enriching the realm of accurate EV charging demand forecasting. This work bears significance in fostering the integration of electric vehicles into transportation systems, aligning with the trajectory towards sustainable energy solutions.
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